HALAS is a human-annotated dataset of ASR hallucinations on unprocessed real audio that shows simple metrics outperform current detection methods at 81% ROC-AUC versus 53.1% F1.
Train- ing and Inference Efficiency of Encoder-Decoder Speech Mod- els,
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HALAS: A Human-Annotated Dataset of Hallucinations of Modern ASR Systems
HALAS is a human-annotated dataset of ASR hallucinations on unprocessed real audio that shows simple metrics outperform current detection methods at 81% ROC-AUC versus 53.1% F1.